Montreal Neurological Institute and Hospital, McGill University, Montreal, Quebec, Canada.
Med Eng Phys. 2013 Mar;35(3):319-28. doi: 10.1016/j.medengphy.2012.05.005. Epub 2012 May 29.
Existing automatic detection techniques show high sensitivity and moderate specificity, and detect seizures a relatively long time after onset. High frequency (80-500 Hz) activity has recently been shown to be prominent in the intracranial EEG of epileptic patients but has not been used in seizure detection. The purpose of this study is to investigate if these frequencies can contribute to seizure detection. The system was designed using 30 h of intracranial EEG, including 15 seizures in 15 patients. Wavelet decomposition, feature extraction, adaptive thresholding and artifact removal were employed in training data. An EMG removal algorithm was developed based on two features: Lack of correlation between frequency bands and energy-spread in frequency. Results based on the analysis of testing data (36 h of intracranial EEG, including 18 seizures) show a sensitivity of 72%, a false detection of 0.7/h and a median delay of 5.7 s. Missed seizures originated mainly from seizures with subtle or absent high frequencies or from EMG removal procedures. False detections were mainly due to weak EMG or interictal high frequency activities. The system performed sufficiently well to be considered for clinical use, despite the exclusive use of frequencies not usually considered in clinical interpretation. High frequencies have the potential to contribute significantly to the detection of epileptic seizures.
现有的自动检测技术具有较高的灵敏度和中等特异性,可以在癫痫发作后相对较长的时间内检测到癫痫发作。最近的研究表明,高频(80-500Hz)活动在癫痫患者的颅内 EEG 中非常明显,但尚未用于癫痫发作检测。本研究旨在探讨这些频率是否有助于癫痫发作的检测。该系统使用 30 小时的颅内 EEG 数据进行设计,其中包括 15 名患者的 15 次癫痫发作。在训练数据中采用了小波分解、特征提取、自适应阈值和伪影去除等技术。基于两个特征(频带之间缺乏相关性和频带内能量分布)开发了一种肌电图去除算法。基于对测试数据(36 小时颅内 EEG,包括 18 次癫痫发作)的分析结果表明,该系统的灵敏度为 72%,误报率为 0.7/h,中位延迟为 5.7s。错过的癫痫发作主要源于高频信号微弱或缺失的癫痫发作,或者源于肌电图去除程序。假阳性主要是由于微弱的肌电图或间发性高频活动引起的。尽管该系统仅使用了临床解释中通常不考虑的频率,但它的性能足以用于临床应用。高频活动有可能对癫痫发作的检测有重要贡献。